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A Machine vision method for non-contact Tool Wear Inspection

机译:用于非接触式工具磨损检查的机器视觉方法

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Tool wear is usually the most relevant parameter of tool performance detection, which directly affects the product quality and tool life. Online tool condition monitoring can effectively avoid workpiece scrap and machine failure. To solve the problems of using electron microscopes to measure tool wear in real production, a machine vision system for tool wear detection is developed in this paper to reduce testing costs. Through rough positioning by morphology-based Canny operator edge detection and image registration, the tool wear area can be extracted effectively. Sub-pixel edge detection based on Zernike moment is used to improve the measurement accuracy and the principal curve method is used to fit sub-pixel edge points to obtain smooth edge curve. Finally, the tool wear can be detected and measured effectively based on these methods. In the real machining process, the test results show that this system features high response speed, high inspecting accuracy and high automation. This system can be effectively applied to the real-time monitoring of tool wear in industry.
机译:工具磨损通常是刀具性能检测最相关的参数,直接影响产品质量和刀具寿命。在线工具状态监控可有效避免工件废料和机器故障。为了解决使用电子显微镜测量实际生产工具磨损的问题,本文开发了一种用于刀具磨损检测的机器视觉系统,以降低测试成本。通过基于形态学的罐头运算符边缘检测和图像配准,可以有效地提取工具磨损区域。基于Zernike矩的子像素边缘检测用于提高测量精度,并且主要曲线方法用于装配子像素边缘点以获得平滑的边缘曲线。最后,可以基于这些方法检测和测量刀具磨损。在实际加工过程中,测试结果表明,该系统具有高响应速度,高检测精度和高自动化。该系统可以有效地应用于工业工具磨损的实时监控。

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